Author:
Le Phuc Q., ,Iliyasu Abdullah M.,Sanchez Jesus A. Garcia,Dong Fangyan,Hirota Kaoru
Abstract
A 3D feature space is proposed to represent visual complexity of images based on Structure, Noise, and Diversity (SND) features that are extracted from the images. By representing images using the proposed feature space, the human classification of visual complexity of images as being simple, medium, or complex can be implied from the structure of the space. The structure of the SND space as determined by a clustering algorithm and a fuzzy inference system are then used to assign visual complexity labels and values to the images respectively. Experiments on Corel 1000A dataset, Web-crawled, and Caltech 256 object category dataset with 1000, 9907, and 30607 images respectively using MATLAB demonstrate the capability of the 3D feature space to effectively represent the visual complexity. The proposal provides a richer understanding about the visual complexity of images which has applications in evaluations to determine the capacity and feasibility of the images to tolerate image processing tasks such as watermarking and compression.
Publisher
Fuji Technology Press Ltd.
Subject
Artificial Intelligence,Computer Vision and Pattern Recognition,Human-Computer Interaction
Reference11 articles.
1. M. Cardici, V. D. Gesu, M. Petrou, and M. E. Tabacchi, “A Fuzzy Approach to the Evaluation of Image Complexity,” Fuzzy Sets and Systems, pp. 1474-1484, Vol.160, 2009.
2. F. Yaghmaee and M. Jamzad, “Computing Watermark Capacity in Images according to their Quad Tree,” Int. Symposium on Signal Processing and Information Technology, 2005.
3. M. Jamzad and F. Yaghmaee, “Using Image Complexity according to Achieving Higher Stability in Digital Watermarking,” Int. Conf. ICIRA, 2004.
4. Q. Liu, A. H. Sung, B. Ribeiro, M.Wei, Z. Chen, and J. Xu, “Image Complexity and Feature Mining for Steganalysis of Least Significant Bit Matching Steganography,” Int. J. of Information Sciences, Vol.178, pp. 21-36, 2008.
5. I. Mario, M. Chacon, D. Alma, and S. Corral, “Image Complexity Measure: a Human Criterion Free Approach,” Proc. NAFIPS2005, pp. 241-246, 2005.
Cited by
11 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献